ArXiv TLDR

Imaging Exploration of Molecular Subtypes in Tongue Squamous Cell Carcinoma

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2604.23679

Hao Pan, Peipei Wang, Yajie Chang, Bingyi Lu, Yunyan Jiang + 7 more

q-bio.GN

TLDR

This study shows radiomic features can non-invasively distinguish molecular subtypes in tongue squamous cell carcinoma (TSCC), offering a new diagnostic tool.

Key contributions

  • Identified two stable molecular subtypes (C1, C2) in TSCC via transcriptomic analysis.
  • Subtypes differed in squamous differentiation, inflammatory signaling, and lipid metabolism.
  • Discovered 10 radiomic features that significantly distinguish these two molecular subtypes.
  • Highlights radiomics as a non-invasive method for characterizing TSCC molecular heterogeneity.

Why it matters

Current molecular profiling for TSCC is invasive and lacks whole-tumor representation. This research establishes radiomics as a non-invasive method to characterize molecular subtypes, offering a crucial step towards biologically informed preoperative assessment. This could improve personalized treatment strategies.

Original Abstract

Tongue squamous cell carcinoma (TSCC) is an aggressive malignancy with marked biological heterogeneity and variable clinical outcomes. Although molecular profiling has improved understanding of TSCC heterogeneity, its clinical use remains constrained by invasive tissue sampling and limited representation of whole-tumor spatial complexity. Meanwhile, most radiomics studies in TSCC have focused on downstream clinical endpoints, and whether imaging can non-invasively reflect intrinsic molecular subtypes remains unclear. In this study, an integrated transcriptomic-radiomics framework was used to investigate the relationship between preoperative imaging phenotypes and molecular subtypes in TSCC. Transcriptomic data from 60 TSCC cases in The Cancer Genome Atlas were analyzed using unsupervised consensus clustering, followed by differential expression and functional enrichment analyses. Matched preoperative imaging data from The Cancer Imaging Archive were manually annotated for primary tumor regions, and radiomic features were extracted using PyRadiomics; group differences were assessed with the U-test. Two stable molecular subtypes, C1 and C2, were identified. Their biological differences were mainly associated with squamous epithelial differentiation, inflammatory signaling, and lipid metabolism, with C2 showing greater enrichment of immune-related pathways. In addition, 10 radiomic features differed significantly between the two subtypes, mainly wavelet-derived texture features from gray-level size zone, dependence, co-occurrence, and run length matrices (P=0.00202-0.0162). These findings support the potential of radiomics as a non-invasive approach for characterizing molecular heterogeneity in TSCC and provide an initial radiogenomic framework for biologically informed preoperative assessment.

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